The Line Pressure Detection for Autonomous Vehicles Based on Deep Learning

Author:

Zhang Xuexi1ORCID,Li Ying1ORCID,Zhan Ruidian1ORCID,Chen Jiayang1ORCID,Li Junxian1ORCID

Affiliation:

1. Guangdong University of Technology, Guangzhou, Guangdong 510006, China

Abstract

Nowadays, vehicle line pressure detection is an important function of an intelligent transportation system. At present, the line pressure detection algorithms mainly include algorithms based on traditional features and models and algorithms based on deep learning. However, these algorithms also have shortcomings such as low detection accuracy or relying on specific scenarios. In this regard, this paper proposes a fast and accurate vehicle line detection algorithm based on deep learning for vehicle images. The algorithm builds a GooleNet-based FCN semantic segmentation network and adds a BN layer, 1 × 1 convolution, and FPN structure to improve the segmentation effect of the GooleNet-FCN network and reduce network parameters. The MobileNet-SSD (no pretrained model) network structure is used for vehicle detection. According to the relationship between the receptive field and the anchor, and then combined with specific data, the prediction branch of the network and the Default Box on the branch are modified and the FPN structure is added for feature fusion to form the final improved MobileNet-SSD network. The experimental results show that the algorithm takes an average time of 67.8 ms per frame, the detection rate of line pressing for a vehicle is 96.6%, and the deep learning models are 25.5 M and 19.2 M, respectively. The experimental results verify the effectiveness and practicality of the detection algorithm proposed in this paper.

Funder

Guangdong University of Technology

Publisher

Hindawi Limited

Subject

Strategy and Management,Computer Science Applications,Mechanical Engineering,Economics and Econometrics,Automotive Engineering

Reference18 articles.

1. Progress of intelligent transportation system key technologies;H. Lu;Science and Technology Review,2019

2. Design and implementation of vehicle pressing yellow line detection based on wavelet;W. Zhao;Computer Engineering and Design,2010

3. Improved gray frame difference statistics of vehicle violation of traffic line;J. Xiong;Industrial Control Computer,2013

4. Autonomous Intelligent Vehicles

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